9/20/2019
How Machine Learning Can Detect Medicare Fraud - usm systems - Medium
How Machine Learning Can Detect Medicare Fraud usm systems Sep 20 · 3 min read
Machine learning could become a new weapon in the ght against Medicare fraud.
Machine learning can be a useful tool in detecting Medicare fraud, according to a new study that can recover anywhere from $ 19 billion to $ 65 billion lost in fraud each year. Researchers at Florida Atlantic University’s College of Engineering and Computer Science recently published the world’s first study using Medicare Part B data, machine learning, and advanced analytics to automate fraud detection. They tested six different machine learners on balanced and unbalanced data sets and eventually found that the RF100 Random Forest algorithm would be most effective in detecting potential cases of fraud. They found that unbalanced data sets are more than balanced data sets when scanning for fraud. “There are many implications in determining what fraud is and what is not, such as clerical error,” says Richard A. Bowder, senior author and Ph.D. Student at the school, https://medium.com/@usmsystems23/how-machine-learning-can-detect-medicare-fraud-caea2181dc5
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